Literature DB >> 33670368

Computational Complexity Reduction of Neural Networks of Brain Tumor Image Segmentation by Introducing Fermi-Dirac Correction Functions.

Yen-Ling Tai1, Shin-Jhe Huang1,2, Chien-Chang Chen1,2,3, Henry Horng-Shing Lu3,4,5.   

Abstract

Nowadays, deep learning methods with high structural complexity and flexibility inevitably lean on the computational capability of the hardware. A platform with high-performance GPUs and large amounts of memory could support neural networks having large numbers of layers and kernels. However, naively pursuing high-cost hardware would probably drag the technical development of deep learning methods. In the article, we thus establish a new preprocessing method to reduce the computational complexity of the neural networks. Inspired by the band theory of solids in physics, we map the image space into a noninteraction physical system isomorphically and then treat image voxels as particle-like clusters. Then, we reconstruct the Fermi-Dirac distribution to be a correction function for the normalization of the voxel intensity and as a filter of insignificant cluster components. The filtered clusters at the circumstance can delineate the morphological heterogeneity of the image voxels. We used the BraTS 2019 datasets and the dimensional fusion U-net for the algorithmic validation, and the proposed Fermi-Dirac correction function exhibited comparable performance to other employed preprocessing methods. By comparing to the conventional z-score normalization function and the Gamma correction function, the proposed algorithm can save at least 38% of computational time cost under a low-cost hardware architecture. Even though the correction function of global histogram equalization has the lowest computational time among the employed correction functions, the proposed Fermi-Dirac correction function exhibits better capabilities of image augmentation and segmentation.

Entities:  

Keywords:  Fermi–Dirac distribution; computational complexity; dimensional fusion U-net; image segmentation

Year:  2021        PMID: 33670368     DOI: 10.3390/e23020223

Source DB:  PubMed          Journal:  Entropy (Basel)        ISSN: 1099-4300            Impact factor:   2.524


  2 in total

1.  AI-Based Pipeline for Classifying Pediatric Medulloblastoma Using Histopathological and Textural Images.

Authors:  Omneya Attallah; Shaza Zaghlool
Journal:  Life (Basel)       Date:  2022-02-03

2.  Smart Fall Detection Framework Using Hybridized Video and Ultrasonic Sensors.

Authors:  Feng-Shuo Hsu; Tang-Chen Chang; Zi-Jun Su; Shin-Jhe Huang; Chien-Chang Chen
Journal:  Micromachines (Basel)       Date:  2021-05-01       Impact factor: 2.891

  2 in total

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